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A Multilayer Network Approach for Guiding Drug Repositioning in Neglected Diseases

机译:在被忽视疾病中指导药物重新定位的多层网络方法

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摘要

Drug development for neglected diseases has been historically hampered due to lack of market incentives. The advent of public domain resources containing chemical information from high throughput screenings is changing the landscape of drug discovery for these diseases. In this work we took advantage of data from extensively studied organisms like human, mouse, E. coli and yeast, among others, to develop a novel integrative network model to prioritize and identify candidate drug targets in neglected pathogen proteomes, and bioactive drug-like molecules. We modeled genomic (proteins) and chemical (bioactive compounds) data as a multilayer weighted network graph that takes advantage of bioactivity data across 221 species, chemical similarities between 1.7 105 compounds and several functional relations among 1.67 105 proteins. These relations comprised orthology, sharing of protein domains, and shared participation in defined biochemical pathways. We showcase the application of this network graph to the problem of prioritization of new candidate targets, based on the information available in the graph for known compound-target associations. We validated this strategy by performing a cross validation procedure for known mouse and Trypanosoma cruzi targets and showed that our approach outperforms classic alignment-based approaches. Moreover, our model provides additional flexibility as two different network definitions could be considered, finding in both cases qualitatively different but sensible candidate targets. We also showcase the application of the network to suggest targets for orphan compounds that are active against Plasmodium falciparum in high-throughput screens. In this case our approach provided a reduced prioritization list of target proteins for the query molecules and showed the ability to propose new testable hypotheses for each compound. Moreover, we found that some predictions highlighted by our network model were supported by independent experimental validations as found post-facto in the literature.
机译:由于缺乏市场激励,历史上阻碍了被忽视疾病的药物开发。包含来自高通量筛选的化学信息的公共领域资源的出现,正在改变这些疾病的药物发现前景。在这项工作中,我们利用了来自人类,小鼠,大肠杆菌和酵母等经过广泛研究的生物的数据,开发了一种新型的集成网络模型,可以对被忽略的病原体蛋白质组和生物活性药物样中的候选药物靶标进行优先级排序和鉴定。分子。我们将基因组(蛋白质)和化学(生物活性化合物)数据建模为多层加权网络图,该网络图利用了221种生物活性数据,1.7 10 5 化合物之间的化学相似性以及1.67 10之间的几种功能关系 5 蛋白。这些关系包括矫正学,蛋白质结构域的共享以及在确定的生化途径中的共享参与。我们基于已知复合目标关联图中的可用信息,展示了此网络图在新候选目标优先级排序问题上的应用。我们通过对已知的小鼠和克氏锥虫靶标执行交叉验证程序来验证此策略,并表明我们的方法优于经典的基于比对方法。此外,我们的模型还提供了额外的灵活性,因为可以考虑使用两个不同的网络定义,从而在两种情况下都找到了质量上不同但明智的候选目标。我们还展示了该网络的应用,可为高通量筛选中针对恶性疟原虫具有活性的孤儿化合物提供目标。在这种情况下,我们的方法为查询分子提供了减少的目标蛋白优先顺序列表,并显示了针对每种化合物提出新的可检验假设的能力。此外,我们发现,网络模型中突出显示的某些预测得到了文献后事实的独立实验验证的支持。

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